首页> 外文期刊>Quality and Reliability Engineering International >EFFICIENT SHIFT DETECTION USING MULTIVARIATE EXPONENTIALLY-WEIGHTED MOVING AVERAGE CONTROL CHARTS AND PRINCIPAL COMPONENTS
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EFFICIENT SHIFT DETECTION USING MULTIVARIATE EXPONENTIALLY-WEIGHTED MOVING AVERAGE CONTROL CHARTS AND PRINCIPAL COMPONENTS

机译:使用多元指数加权移动平均控制图和主要组件的有效位移检测

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摘要

This paper demonstrates the use of principal components in conjunction with the multivariate exponentially-weighted moving average (MEWMA) control procedure for process monitoring. It is demonstrated that the number of variables to be monitored is reduced through this approach, and that the average run length to detect process shifts or upsets is substantially reduced as well. The performance of the MEWMA applied to all the variables may be related to the MEWMA control chart that uses principal components through the non-centrality parameter. An average run length table demonstrates the advantages of the principal components MEWMA over the procedure that uses all of the variables. An illustrative example is provided.
机译:本文演示了将主成分与多元指数加权移动平均值(MEWMA)控制程序结合使用的过程监控。事实证明,通过这种方法可以减少要监视的变量的数量,并且可以显着减少用于检测过程偏移或不正常现象的平均运行时间。应用于所有变量的MEWMA的性能可能与通过非中心性参数使用主要成分的MEWMA控制图有关。平均运行长度表证明了主要组件MEWMA优于使用所有变量的过程。提供了说明性示例。

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